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ing Path to Self Driving Cars

You can find the Markdown File Here

You can find the Lecture 1 Notes hereLecture 2 Notes can be found hereLecture 3 Notes can be found hereLecture 4 Notes can be found here

These are the Lecture 4 notes for the MIT 6.S094: Deep Learning for Self-Driving Cars Course (2018), Taught by Lex Fridman.

All Images are from the Lecture Slides.

Applying DL to understanding Sense of Human Beings

Focus on Computer Vision.

How can we use CV to extract useful information from Videos (in Context of Cars)

Deep Learning for Human Sensing:Using CV, DL to create systems that operate in the real world.

Requirements (Ordered according to importance):

Takeaway: Data Collection, cleaning is more important than algorithms.

Human Imperfections

Given these flaws, and the Two Paths to an Autonomous Future (Human Centred Vs Full Autonomy) discussed in Lecture 1:Is the Human Centred idea a bad idea?

MIT-AVT Naturalistic Driving Dataset

Data Collection:

The Data collected provides an insight of

Safety Vs Preference for Autopilot?

Pedestrian Detection

Challenges:

Solutions:The need is to extract features from raw pixels.

Sliding Image:

More Intelligent netoworks:

These networks generate the candidates to be considered instead of a sliding window approach, providing a subset to be considered.

Data (from different intersections):

Body Pose Estimation

Includes:

Why is it important?

Sequential Detection Approach

DeepPose Holistic View:

Cascade of Pose Regressors:

Part Detection:

Glance Classification:

Face Alignment:

Gaze Classification Pipeline:

Annotation Tooling:Semi-automated: Data that the network is not confident about are manually annotated.

Fundamental Tradeoff:What is the accuracy we are willing to put up with?

For increase in accuracy, a human manually iterates and annotates thet data.

False Positives:Can be dealt with by more training data. Some degree of human annotation fixes some of the problems.

Driver State Detection:

Emotion Detection of the driver.

Cognitive Load:

Degree to which a person is mentally busy.

Human Centred Vision for Autonomous Vehicles:

You can find me on Twitter @bhutanisanyam1, connect with me on Linkedin hereHere and Here are two articles on my Learning Path to Self Driving Cars

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